Abstract

COVID-19 is a fast-growing disease all over the world, but facilities in the hospitals are restricted. Due to unavailability of an appropriate vaccine or medicine, early identification of patients suspected to have COVID-19 plays an important role in limiting the extent of disease. Lung computed tomography (CT) imaging is an alternative to the RT-PCR test for diagnosing COVID-19. Manual segmentation of lung CT images is time consuming and has several challenges, such as the high disparities in texture, size, and location of infections. Patchy ground-glass and consolidations, along with pathological changes, limit the accuracy of the existing deep learning-based CT slices segmentation methods. To cope with these issues, in this paper we propose a fully automated and efficient deep learning-based method, called LungINFseg, to segment the COVID-19 infections in lung CT images. Specifically, we propose the receptive-field-aware (RFA) module that can enlarge the receptive field of the segmentation models and increase the learning ability of the model without information loss. RFA includes convolution layers to extract COVID-19 features, dilated convolution consolidated with learnable parallel-group convolution to enlarge the receptive field, frequency domain features obtained by discrete wavelet transform, which also enlarges the receptive field, and an attention mechanism to promote COVID-19-related features. Large receptive fields could help deep learning models to learn contextual information and COVID-19 infection-related features that yield accurate segmentation results. In our experiments, we used a total of 1800+ annotated CT slices to build and test LungINFseg. We also compared LungINFseg with 13 state-of-the-art deep learning-based segmentation methods to demonstrate its effectiveness. LungINFseg achieved a dice score of and an intersection-over-union (IoU) score of —higher than the ones of the other 13 segmentation methods. Specifically, the dice and IoU scores of LungINFseg were better than those of the popular biomedical segmentation method U-Net.

Highlights

  • Coronavirus disease 2019 (COVID-19) is an infectious disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), which is still threatening humans worldwide

  • The main contributions of this article are listed below: 1. We propose a fully automated and efficient deep learning based method to segment the COVID-19 infection in lung computed tomography (CT) images

  • We propose the use of the learnable parallel dilated group convolutional block (LPDGC) block, in which the conventional convolutional filters employed in the parallel dilated group convolutional (PDGC) block are replaced by a fully learnable group convolution mechanism [31]

Read more

Summary

Introduction

Coronavirus disease 2019 (COVID-19) is an infectious disease caused by severe acute respiratory syndrome coronavirus 2 (SARS-CoV-2), which is still threatening humans worldwide. It should be noted that chest CT imaging, which is a non-invasive, routine diagnostic tool for pneumonia, has been used to supplement RT-PCR testing to detect COVID-19 [3]. The study of [4] concluded that chest CT images reveal some noted imaging features of COVID-19, including groundglass opacification (GGO) and consolidative opacities overlaid on GGO, which can be found mainly in the lower lobes. These features can help detect COVID-19 early before noticing the clinical symptoms. CTs have higher accuracy than CXR and allow diminishing the false negative errors from repeated swab analysis [7]

Methods
Results
Conclusion
Full Text
Published version (Free)

Talk to us

Join us for a 30 min session where you can share your feedback and ask us any queries you have

Schedule a call